Enhanced Student Retention In Open And Distance Education Through Effective Academic Performance Model Using Naïve Bayes And K-Nearest Neighbor Machine Learning Algorithms

Ezeanya C. U, Onyeji E. M, Ejimofor I. A
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Abstract

Improving student performance in an academic pursuit is one of the key concerns of institutions especially open and distance learning institutions where learners are separated from the institution by geographical region. The current observation of low-quality graduates from colleges and universities, particularly in open and distance learning, can be attributed to the lack of mechanisms that could help administrators at universities to forecast the academic achievement of the concerned students in the coming years. The goal of data mining in education is to create models, algorithms, and techniques for analyzing information gathered from learning environments to comprehend and enhance the learning process. The goal of this research is to identify patterns in the measures of academic achievement and how they relate to admission, high school, and personal information about the students. These findings can serve as a solid basis for customizing and enhancing the curriculum for open and distance learning to better suit the needs of individual students. Also, the research work identified factors that had a crucial influence on overall students’ performance. Hybridizing Naïve Bayes and K-Nearest Neighbor were used as Classifiers to develop a model for predicting the performance of students. The new model which is the hybridized model (combined Naïve Bayes and K-Nearest Neighbor) predicts better results than individual Naïve Bayes and K-Nearest Neighbor algorithms which shown itself as the best prediction and classification model.
利用 Naïve Bayes 和 K-Nearest Neighbor 机器学习算法建立有效的学业成绩模型,提高远程开放教育的学生保留率
提高学生的学业成绩是教育机构,尤其是开放式远程教育机构关注的重点之一,因为在这些机构中,学习者因地理区域而与教育机构分离。目前观察到的高校(尤其是远程开放教育)毕业生质量低下的现象,可以归因于缺乏能够帮助高校管理者预测相关学生未来几年学业成绩的机制。教育数据挖掘的目标是创建模型、算法和技术,用于分析从学习环境中收集到的信息,以理解和改进学习过程。本研究的目标是找出学业成绩衡量标准的模式,以及它们与入学、高中和学生个人信息的关系。这些发现可以作为定制和改进开放式远程学习课程的坚实基础,以更好地满足学生的个人需求。此外,研究工作还发现了对学生总体成绩有重要影响的因素。混合使用 Naïve Bayes 和 K-Nearest Neighbor 作为分类器,开发了一个预测学生成绩的模型。与单独的 Naïve Bayes 算法和 K-Nearest Neighbor 算法相比,混合模型(Naïve Bayes 和 K-Nearest Neighbor 算法的组合)能预测出更好的结果,显示出它是最佳的预测和分类模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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